评价性能支持向量机分类器Terhadap心智

Mhd. Furqan, Rakhmat Kurniawan, Kiki Iranda Hp
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引用次数: 2

摘要

在自闭症、双相情感障碍和精神分裂症患者的大脑中发现的基因表达被确定为重叠。重叠是基因价值相似的一种状态。本文旨在利用全基因组关联研究数据,确定基于基因表达的支持向量机算法在自闭症、双相情感障碍和精神分裂症分类中的最佳性能。使用三个支持向量机核,本研究评估了高斯,拉普拉斯和s型的全基因组关联研究数据集的性能。数据集来自精神病学基因组学协会的出版物,其中660个数据由每种疾病的220个数据组成。本研究提出了一种针对一对一和一对全多类支持向量机的最优核,并利用准确率对其性能进行了评价。研究结果表明,与其他支持向量机核相比,高斯核在将自闭症、双相情感障碍和精神分裂症的全基因组关联研究数据分类为早期诊断方面具有最好的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Evaluasi Performa Support Vector Machine Classifier Terhadap Penyakit Mental
Expression of genes found in the brains of autism, bipolar, and schizophrenia patients identified as overlapping. The overlap is a state in which the values of genes are similar. This paper aims to determine the best performance of support vector machines algorithm in classifying autism, bipolar, and schizophrenia based on the expression of genes using genome-wide association studies data. Using three support vector machine kernels, this study evaluates the performance of gaussian, laplacian, and sigmoid for genome-wide association studies datasets. The datasets were obtained from Psychiatric Genomics Consortium publications, where 660 data were taken with each disorder consisting of 220 data. This study proposes an optimal kernel for one-against-one and one-against-all multiclass support vector machine, and the performance is evaluated using accuracy. The study results show that the Gaussian kernel has the best accuracy performance compared to other support vector machines kernels in classifying genome-wide association studies data of autism, bipolar, and schizophrenia as early diagnosis.
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